Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients

Author:

Pastor André Filipe12,Docena Cássia3,Rezende Antônio Mauro4ORCID,Oliveira Flávio Rosendo da Silva5,Sena Marília de Albuquerque6ORCID,Morais Clarice Neuenschwander Lins de6,Bresani-Salvi Cristiane Campello6ORCID,Vasconcelos Luydson Richardson Silva7,Valença Kennya Danielle Campelo6,Mariz Carolline de Araújo7,Brito Carlos8,Fonseca Cláudio Duarte9,Braga Cynthia7ORCID,Reis Christian Robson de Souza4,Marques Ernesto Torres de Azevedo610ORCID,Acioli-Santos Bartolomeu6ORCID

Affiliation:

1. Sertão Pernambucano Federal Institute of Education, Science and Technology, Petrolina 56316-686, PE, Brazil

2. Department of Microbiology, Icahn School of Medicine at Mount Sinai, New York, NY 10029-6574, USA

3. Core Facility, Oswaldo Cruz Foundation, Recife 50740-465, PE, Brazil

4. Department of Microbiology, Aggeu Magalhães Institute, Oswaldo Cruz Foundation, Recife 50740-465, PE, Brazil

5. Federal Institute of Education, Science and Technology of Pernambuco, Recife 50740-545, PE, Brazil

6. Department of Virology, Aggeu Magalhães Institute, Oswaldo Cruz Foundation, Recife 50740-465, PE, Brazil

7. Department of Parasitology, Aggeu Magalhães Institute, Oswaldo Cruz Foundation, Recife 50740-465, PE, Brazil

8. Department of Clinical Medicine, Pernambuco Federal University, Recife 50740-600, PE, Brazil

9. Servidores do Estado Hospital (HSE), Recife 52020-020, PE, Brazil

10. Department of Infectious Diseases and Microbiology, Graduate School of Public Health, University of Pittsburgh, Pittsburgh, PA 15261, USA

Abstract

We present a genome polymorphisms/machine learning approach for severe COVID-19 prognosis. Ninety-six Brazilian severe COVID-19 patients and controls were genotyped for 296 innate immunity loci. Our model used a feature selection algorithm, namely recursive feature elimination coupled with a support vector machine, to find the optimal loci classification subset, followed by a support vector machine with the linear kernel (SVM-LK) to classify patients into the severe COVID-19 group. The best features that were selected by the SVM-RFE method included 12 SNPs in 12 genes: PD-L1, PD-L2, IL10RA, JAK2, STAT1, IFIT1, IFIH1, DC-SIGNR, IFNB1, IRAK4, IRF1, and IL10. During the COVID-19 prognosis step by SVM-LK, the metrics were: 85% accuracy, 80% sensitivity, and 90% specificity. In comparison, univariate analysis under the 12 selected SNPs showed some highlights for individual variant alleles that represented risk (PD-L1 and IFIT1) or protection (JAK2 and IFIH1). Variant genotypes carrying risk effects were represented by PD-L2 and IFIT1 genes. The proposed complex classification method can be used to identify individuals who are at a high risk of developing severe COVID-19 outcomes even in uninfected conditions, which is a disruptive concept in COVID-19 prognosis. Our results suggest that the genetic context is an important factor in the development of severe COVID-19.

Funder

FIOTEC Foundation

Publisher

MDPI AG

Subject

Virology,Infectious Diseases

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